Unifying Materials Representations through Foundation Models: The FM4M Approach
Abstract
Foundation models, pre-trained on vast and diverse datasets, have revolutionized various domains of artificial intelligence, notably in natural language processing and computer vision. In this talk, we explore the emerging role of foundation models in the fields of materials science and chemistry. We will discuss how these models can be leveraged to accelerate the discovery of new materials, predict molecular properties, and enhance our understanding of complex chemical processes. By integrating foundation models into research workflows, researchers can achieve new levels of precision and efficiency, paving the way for breakthroughs that were previously beyond reach. The talk will also address current limitations and future directions, emphasizing the need for continued innovation to fully harness the power of these models.